Skip to main content

Computer Science

digital-technology-fos-header-2024

Technology is evolving faster than ever—and so should your skills. Our newly reimagined computer science area of study can equip you with the tools to thrive in today’s data-driven, AI-powered world.

Whether you're launching a new career or leveling up your current one, our programs are designed to meet the demands of the modern tech landscape. Learn from industry experts through hands-on, project-based courses that blend theory with real-world application.

Get More Info

 

Build the future. One line of code at a time.

Explore our key focus areas:

Software Development & Programming
Master the languages, frameworks, and tools that power today’s most in-demand applications—from web and mobile to enterprise systems.

Machine Learning & Artificial Intelligence
Dive into the world of intelligent systems. Learn how to build, train, and deploy models that drive innovation across industries.

Data Analytics & Infrastructure 
Gain the skills to collect, manage, and analyze data at scale. From pipelines to predictive analytics, turn raw data into actionable insights.

Cybersecurity, Cloud, and Emerging Tech
Stay ahead of the curve with courses in cybersecurity, cloud computing, blockchain, and more.

Why Choose UCLA Extension?

  • Flexible online and hybrid formats
  • Taught by working professionals in the field
  • Career-focused certificates and specializations
  • Open enrollment—no formal application required
digital-technology-fos-sub
Computer Science

Courses

COM SCI 751.9

Driving Value through Agile Principles and Mindset

For students looking to better understand the basics of Agile Methodology, this class will tough on the history of the craft, the differences between predictive( Waterfall) and Agile deliver methods and basic implementation in the workplace. 
COM SCI X 450.2

Exploratory Data Analysis and Visualization

Learn the iterative process of exploratory data analysis (EDA), data analysis techniques, data exploration, and visualization. Course tools include R for data analysis and Tableau for data visualization.
COM SCI 910.1

Foundations of Generative AI

This course introduces generative AI through theory and hands-on practice, covering model evolution, practical techniques, and ethical frameworks to build, refine, and evaluate systems in real-world contexts.
MGMT X 412.1

Fundamentals of AI in Finance

This course covers AI fundamentals in finance, Python basics, financial libraries (Numpy, Pandas, etc.), and SQL. It includes machine learning concepts, supervised/unsupervised learning, reinforcement learning, and algorithmic trading, concluding with a real-world case study application.